2,500+ MCP servers ready to use
Vinkius

Relevance AI MCP Server for Pydantic AI 10 tools — connect in under 2 minutes

Built by Vinkius GDPR 10 Tools SDK

Pydantic AI brings type-safe agent development to Python with first-class MCP support. Connect Relevance AI through Vinkius and every tool is automatically validated against Pydantic schemas. catch errors at build time, not in production.

Vinkius supports streamable HTTP and SSE.

python
import asyncio
from pydantic_ai import Agent
from pydantic_ai.mcp import MCPServerHTTP

async def main():
    # Your Vinkius token. get it at cloud.vinkius.com
    server = MCPServerHTTP(url="https://edge.vinkius.com/[YOUR_TOKEN_HERE]/mcp")

    agent = Agent(
        model="openai:gpt-4o",
        mcp_servers=[server],
        system_prompt=(
            "You are an assistant with access to Relevance AI "
            "(10 tools)."
        ),
    )

    result = await agent.run(
        "What tools are available in Relevance AI?"
    )
    print(result.data)

asyncio.run(main())
Relevance AI
Fully ManagedVinkius Servers
60%Token savings
High SecurityEnterprise-grade
IAMAccess control
EU AI ActCompliant
DLPData protection
V8 IsolateSandboxed
Ed25519Audit chain
<40msKill switch
Stream every event to Splunk, Datadog, or your own webhook in real-time

* Every MCP server runs on Vinkius-managed infrastructure inside AWS - a purpose-built runtime with per-request V8 isolates, Ed25519 signed audit chains, and sub-40ms cold starts optimized for native MCP execution. See our infrastructure

About Relevance AI MCP Server

Connect your conversational AI to your Relevance AI workspace. By wrapping your custom agents, datasets, and API tools into this MCP extension, you transform your chat interface into a command center for orchestrating complex, autonomous AI operations and large-scale data workflows.

Pydantic AI validates every Relevance AI tool response against typed schemas, catching data inconsistencies at build time. Connect 10 tools through Vinkius and switch between OpenAI, Anthropic, or Gemini without changing your integration code. full type safety, structured output guarantees, and dependency injection for testable agents.

What you can do

  • Orchestrate Agents — Command your pre-built autonomous agents to execute tasks (trigger_agent). Monitor their progress and read their exact reasoning steps dynamically (get_agent_run). Use list_agents to discover all available AI worker configurations.
  • Execute Tasks & Workflows — Trigger predefined chained prompts or specific micro-tasks without leaving your chat (trigger_task), scaling repetitive workflows reliably.
  • Manage Knowledge Datasets — Take full control of your vector databases and tables. Insert new rows of knowledge directly from conversational context (insert_documents), retrieve raw unstructured data entries (get_documents), or surgically delete obsolete knowledge base items (delete_documents).

The Relevance AI MCP Server exposes 10 tools through the Vinkius. Connect it to Pydantic AI in under two minutes — no API keys to rotate, no infrastructure to provision, no vendor lock-in. Your configuration, your data, your control.

How to Connect Relevance AI to Pydantic AI via MCP

Follow these steps to integrate the Relevance AI MCP Server with Pydantic AI.

01

Install Pydantic AI

Run pip install pydantic-ai

02

Replace the token

Replace [YOUR_TOKEN_HERE] with your Vinkius token

03

Run the agent

Save to agent.py and run: python agent.py

04

Explore tools

The agent discovers 10 tools from Relevance AI with type-safe schemas

Why Use Pydantic AI with the Relevance AI MCP Server

Pydantic AI provides unique advantages when paired with Relevance AI through the Model Context Protocol.

01

Full type safety: every MCP tool response is validated against Pydantic models, catching data inconsistencies before they reach your application

02

Model-agnostic architecture. switch between OpenAI, Anthropic, or Gemini without changing your Relevance AI integration code

03

Structured output guarantee: Pydantic AI ensures tool results conform to defined schemas, eliminating runtime type errors

04

Dependency injection system cleanly separates your Relevance AI connection logic from agent behavior for testable, maintainable code

Relevance AI + Pydantic AI Use Cases

Practical scenarios where Pydantic AI combined with the Relevance AI MCP Server delivers measurable value.

01

Type-safe data pipelines: query Relevance AI with guaranteed response schemas, feeding validated data into downstream processing

02

API orchestration: chain multiple Relevance AI tool calls with Pydantic validation at each step to ensure data integrity end-to-end

03

Production monitoring: build validated alert agents that query Relevance AI and output structured, schema-compliant notifications

04

Testing and QA: use Pydantic AI's dependency injection to mock Relevance AI responses and write comprehensive agent tests

Relevance AI MCP Tools for Pydantic AI (10)

These 10 tools become available when you connect Relevance AI to Pydantic AI via MCP:

01

delete_documents

This action is irreversible. Deletes documents from a dataset by their IDs

02

get_agent_run

Retrieves the status and logs of a specific agent run

03

get_documents

Retrieves documents from a dataset

04

insert_documents

Provide documents as a JSON array of objects. Inserts documents into a dataset

05

list_agents

Lists all AI agents in the Relevance AI studio

06

list_datasets

Lists all datasets (knowledge tables) in the project

07

list_tasks

Lists all tasks (chained prompts) in the studio

08

list_tools

Lists all custom tools registered in the studio

09

trigger_agent

Provide inputs as a JSON object. Triggers an AI agent execution

10

trigger_task

Triggers a specific task execution

Example Prompts for Relevance AI in Pydantic AI

Ready-to-use prompts you can give your Pydantic AI agent to start working with Relevance AI immediately.

01

"List all available agents in my Relevance AI Studio and their IDs."

02

"Start a run for the 'Market Analysis' agent passing `{"company": "OpenAI"}` as the payload, then tell me the Run ID."

03

"Insert this JSON array of top competitor articles into the 'competitor_docs' dataset."

Troubleshooting Relevance AI MCP Server with Pydantic AI

Common issues when connecting Relevance AI to Pydantic AI through the Vinkius, and how to resolve them.

01

MCPServerHTTP not found

Update: pip install --upgrade pydantic-ai

Relevance AI + Pydantic AI FAQ

Common questions about integrating Relevance AI MCP Server with Pydantic AI.

01

How does Pydantic AI discover MCP tools?

Create an MCPServerHTTP instance with the server URL. Pydantic AI connects, discovers all tools, and generates typed Python interfaces automatically.
02

Does Pydantic AI validate MCP tool responses?

Yes. When you define result types as Pydantic models, every tool response is validated against the schema. Invalid data raises a clear error instead of silently corrupting your pipeline.
03

Can I switch LLM providers without changing MCP code?

Absolutely. Pydantic AI abstracts the model layer. your Relevance AI MCP integration works identically with OpenAI, Anthropic, Google, or any supported provider.

Connect Relevance AI to Pydantic AI

Get your token, paste the configuration, and start using 10 tools in under 2 minutes. No API key management needed.